Prediction of gestational diabetes mellitus using machine learning from birth cohort data of the Japan Environment and Children's Study

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作者
Masahiro Watanabe
Akifumi Eguchi
Kenichi Sakurai
Midori Yamamoto
Chisato Mori
机构
[1] Chiba University,Department of Sustainable Health Science, Center for Preventive Medical Sciences
[2] Chiba University,Department of Nutrition and Metabolic Medicine, Center for Preventive Medical Sciences
[3] Chiba University,Department of Bioenvironmental Medicine, Graduate School of Medicine
[4] Nagoya City University,undefined
[5] National Institute for Environmental Studies,undefined
[6] National Center for Child Health and Development,undefined
[7] Hokkaido University,undefined
[8] Tohoku University,undefined
[9] Fukushima Medical University,undefined
[10] Yokohama City University,undefined
[11] University of Yamanashi,undefined
[12] University of Toyama,undefined
[13] Kyoto University,undefined
[14] Osaka University,undefined
[15] Hyogo Medical University,undefined
[16] Tottori University,undefined
[17] Kochi University,undefined
[18] Kyushu University,undefined
[19] Kumamoto University,undefined
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摘要
Recently, prediction of gestational diabetes mellitus (GDM) using artificial intelligence (AI) from medical records has been reported. We aimed to evaluate GDM-predictive AI-based models using birth cohort data with a wide range of information and to explore factors contributing to GDM development. This investigation was conducted as a part of the Japan Environment and Children's Study. In total, 82,698 pregnant mothers who provided data on lifestyle, anthropometry, and socioeconomic status before pregnancy and the first trimester were included in the study. We employed machine learning methods as AI algorithms, such as random forest (RF), gradient boosting decision tree (GBDT), and support vector machine (SVM), along with logistic regression (LR) as a reference. GBDT displayed the highest accuracy, followed by LR, RF, and SVM. Exploratory analysis of the JECS data revealed that health-related quality of life in early pregnancy and maternal birthweight, which were rarely reported to be associated with GDM, were found along with variables that were reported to be associated with GDM. The results of decision tree-based algorithms, such as GBDT, have shown high accuracy, interpretability, and superiority for predicting GDM using birth cohort data.
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